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Clustering Methods with Qualitative Data: A Mixed Methods Approach for Prevention Research with Small Samples

机译:定性数据的聚类方法:小样本预防研究的混合方法

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摘要

Qualitative methods potentially add depth to prevention research, but can produce large amounts of complex data even with small samples. Studies conducted with culturally distinct samples often produce voluminous qualitative data, but may lack sufficient sample sizes for sophisticated quantitative analysis. Currently lacking in mixed methods research are methods allowing for more fully integrating qualitative and quantitative analysis techniques. Cluster analysis can be applied to coded qualitative data to clarify the findings of prevention studies by aiding efforts to reveal such things as the motives of participants for their actions and the reasons behind counterintuitive findings. By clustering groups of participants with similar profiles of codes in a quantitative analysis, cluster analysis can serve as a key component in mixed methods research.This article reports two studies. In the first study, we conduct simulations to test the accuracy of cluster assignment using three different clustering methods with binary data as produced when coding qualitative interviews. Results indicated that hierarchical clustering, K-Means clustering, and latent class analysis produced similar levels of accuracy with binary data, and that the accuracy of these methods did not decrease with samples as small as 50. Whereas the first study explores the feasibility of using common clustering methods with binary data, the second study provides a “real-world” example using data from a qualitative study of community leadership connected with a drug abuse prevention project. We discuss the implications of this approach for conducting prevention research, especially with small samples and culturally distinct communities.
机译:定性方法可能会增加预防研究的深度,但是即使使用少量样本也可以生成大量复杂数据。用文化上不同的样本进行的研究通常会产生大量的定性数据,但可能缺乏足够的样本量来进行复杂的定量分析。当前在混合方法研究中缺乏的方法允许更充分地整合定性和定量分析技术。聚类分析可用于编码的定性数据,以通过帮助揭示参与者行为动机和反直觉发现背后的原因之类的东西来澄清预防研究的结果。通过在定量分析中对具有相似代码配置文件的参与者组进行聚类,聚类分析可以作为混合方法研究的关键组成部分。本文报告了两项研究。在第一个研究中,我们进行了模拟,以使用三种不同的聚类方法来测试聚类分配的准确性,这些聚类方法是在对定性访谈进行编码时产生的二进制数据。结果表明,层次聚类,K-Means聚类和潜在类分析在二进制数据上产生了相似的准确度,并且这些方法的准确度在样本数小于50的情况下并没有降低。而第一项研究探讨了使用这种方法的可行性。常见的使用二进制数据进行聚类的方法,第二项研究提供了一个“真实世界”示例,该示例使用了与预防药物滥用项目相关的社区领导力定性研究的数据。我们讨论了这种方法对开展预防研究的意义,尤其是针对小样本和具有文化差异的社区。

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